Efficient privacy loss accounting for subsampling and random allocation
Vitaly Feldman, Moshe Shenfeld

TL;DR
This paper introduces an efficient method for privacy loss accounting under subsampling and random allocation, improving accuracy and utility analysis for differentially private algorithms like DP-SGD.
Contribution
It develops new tools for privacy loss distribution computation, enabling precise privacy analysis for random allocation in DP, surpassing previous approximation-based methods.
Findings
Privacy loss distribution can be computed efficiently for random allocation.
Random allocation offers at least as good privacy-utility trade-offs as Poisson subsampling.
The method enhances privacy accounting accuracy for DP algorithms like DP-SGD.
Abstract
We consider the privacy amplification properties of a sampling scheme in which a user's data is used in steps chosen randomly and uniformly from a sequence (or set) of steps. This sampling scheme has been recently applied in the context of differentially private optimization (Chua et al., 2024a; Choquette-Choo et al., 2025) and communication-efficient high-dimensional private aggregation (Asi et al., 2025), where it was shown to have utility advantages over the standard Poisson sampling. Theoretical analyses of this sampling scheme (Feldman & Shenfeld, 2025; Dong et al., 2025) lead to bounds that are close to those of Poisson sampling, yet still have two significant shortcomings. First, in many practical settings, the resulting privacy parameters are not tight due to the approximation steps in the analysis. Second, the computed parameters are either the hockey stick or Renyi…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Mobile Crowdsensing and Crowdsourcing · Cryptography and Data Security
